Marcin Beer Data
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603
---
title: "Beer Analytics"
output:
flexdashboard::flex_dashboard:
orientation: rows
vertical_layout: fill
social: ["linkedin"]
source_code: embed
---
```{r setup, include=FALSE}
library(flexdashboard)
library(knitr)
library(DT)
library(rpivotTable)
library(ggplot2)
library(openintro)
library(highcharter)
library(dplyr)
library(tidyverse)
library(plotly)
library(maps)
```
```{r}
data <- read.csv("~/Documents/GitHub/beer-data/data.csv")
```
```{r}
stateCount <- data %>% group_by(brewery_state) %>%
dplyr::summarize(count = n()) %>%
arrange(desc(count))
stateCount$brewery_state <- abbr2state(stateCount$brewery_state)
```
```{r}
dat <- iso3166
countryCount <- data %>% group_by(brewery_country) %>%
dplyr::summarize(count = n()) %>%
arrange(desc(count))
```
```{r}
countryRatings <- data %>% select('brewery_country','rating_score')
countryRatings <- setNames(aggregate(countryRatings[,2], list(countryRatings$brewery_country),
mean) %>% mutate_if(is.numeric, round, digits=2), c('brewery_country', 'AverageRating'))
countCountries <- data %>% group_by(brewery_country) %>%
dplyr::summarize(count = n()) %>%
arrange(desc(count))
countryRatings <- full_join(countryRatings,countCountries, by = 'brewery_country') %>%
arrange(desc(AverageRating))
countryRatings <- filter(countryRatings, count > 2)
countryRatings <- head(countryRatings, 10)
```
```{r}
breweriesFormatted <- data %>% select('brewery_name','rating_score')
breweriesFormatted <- setNames(aggregate(breweriesFormatted[,2], list(breweriesFormatted$brewery_name), mean) %>% mutate_if(is.numeric, round, digits=2), c('brewery_name', 'AverageRating'))
breweriesFormatted<- breweriesFormatted[order(-breweriesFormatted$AverageRating), ]
topBreweries <- breweriesFormatted
topBreweries <- breweriesFormatted[order(-topBreweries$AverageRating), ]
countBreweries <- data %>% group_by(brewery_name) %>%
dplyr::summarize(count = n()) %>%
arrange(desc(count))
mergedData <-
full_join(topBreweries,countBreweries, by = 'brewery_name')
mergedData <- filter(mergedData, count > 5) %>%
arrange(desc(AverageRating))
mergedData <- setNames(mergedData, c('Brewery','AverageRating','Count'))
```
Home
==================
Row
------------------
### Data Refreshed July 2021
```{r}
valueBox(paste('Marcin Beer Data'),
color = '#063970')
```
### Unique Breweries
```{r}
ss <- 1
valueBox(length(countBreweries$brewery_name),
icon = 'fa-beer')
```
### Personal Average Score
```{r}
gauge(round(mean(data$rating_score),
digits = 2),
min = 0,
max = 5,
gaugeSectors(success = c(0,2),
warning = c(2,4),
danger = c(4,5),
colors = c('red','yellow','green')))
```
### Global Average Score of Sample
```{r}
gauge(round(mean(data$global_rating_score),
digits = 2),
min = 0,
max = 5,
gaugeSectors(success = c(0,2),
warning = c(2,4),
danger = c(4,5),
colors = c('red','yellow','green')))
```
### Total Number of Check-Ins
```{r}
valueBox(length(data$beer_name),
icon = 'fa-pencil')
```
Column {data-width=350}
-----------------------------------------------------------------------
### Top 12 Breweries With Minimum 5 Samples
```{r}
mergedData <- head(mergedData, 12)
mergedData$Brewery <- factor(mergedData$Brewery, levels = unique(mergedData$Brewery)[order(mergedData$AverageRating, decreasing = TRUE)])
topBreweryPlot <- plot_ly(mergedData,
x = ~Brewery,
y = ~AverageRating,
ascending = TRUE,
type = 'bar') %>%
layout(showlegend = FALSE)
topBreweryPlot
```
Row
---------------------
### Top Countries With Sample Size > 2
```{r}
countryRatings$brewery_country <- factor(countryRatings$brewery_country, levels = unique(countryRatings$brewery_country)[order(countryRatings$AverageRating, decreasing = TRUE)])
topCountryPlot <- plot_ly(countryRatings,
x = ~brewery_country,
y = ~AverageRating,
ascending = TRUE,
type = 'bar') %>%
layout(showlegend = FALSE)
topCountryPlot
```
US State Map
=========================
```{r}
s <- map_data('state')
highchart() %>%
hc_title(text = "Count of Beers by State") %>%
hc_subtitle(text = "Heatmap") %>%
hc_add_series_map(usgeojson, stateCount,
name = 'brewery_state',
value = 'count',
joinBy = c("woename", "brewery_state")) %>%
hc_colorAxis(minColor = "wheat", maxColor = "darkgreen") %>%
hc_mapNavigation(enabled = T)
```
World Map
=========================
```{r}
highchart() %>%
hc_title(text = "Count of Beers by Country") %>%
hc_subtitle(text = "Heatmap") %>%
hc_add_series_map(worldgeojson, (countryCount %>%
mutate(brewery_country = replace(brewery_country, brewery_country == 'United States', 'United States of America'))),
name = 'brewery_country',
value = 'count',
joinBy = c("name", "brewery_country")) %>%
hc_colorAxis(minColor = "green", maxColor = "darkgreen") %>%
hc_mapNavigation(enabled = T)
```
Full Rating Table
========================
```{r}
dataSummary <- data %>% select('brewery_name','beer_name','brewery_country', 'brewery_state', 'rating_score', 'global_rating_score')
dataSummary <- data.frame(
dataSummary$brewery_name,
dataSummary$beer_name,
dataSummary$brewery_country,
abbr2state(data$brewery_state),
dataSummary$rating_score,
dataSummary$global_rating_score)
dataSummary <- setNames(dataSummary, c('Brewery Name','Beer Name','Brewery Country','Brewery State', 'My Rating', 'Global Rating'))
datatable(dataSummary,
caption = 'Full Ratings Table',
rownames = T,
filter = 'top',
options= list(pageLength = 25))
```
State Count
========================
```{r}
stateCount <- stateCount %>% drop_na()
stateNames <- data.frame(state.name)
stateCount <- setNames(stateCount, c('state.name', 'Count'))
stateMetrics <- full_join(stateNames, stateCount, 'state.name')
stateMetrics <- stateMetrics %>% dplyr::mutate(Count = replace_na(Count, 0))
stateMetrics <- setNames(stateMetrics, c('State Name', 'Count'))
datatable(stateMetrics,
caption = 'Count of Unique Beers per State',
rownames = T,
filter = 'top',
options = list(pageLength = 51))
```